Alberto Pessia

Postdoc at Institute for Molecular Medicine Finland (FIMM)

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Position 2016 → Current (4 years)
Bioinformatician/Biostatistician at Institute for Molecular Medicine Finland (FIMM)

Statistical analysis of metabolomics data and writing R/Julia packages to automate my everyday job

Statistical analysis of metabolomics data and writing R/Julia packages to automate my everyday job

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Open source Nov 2015 → Current (4 years, 2 months)
Last commit on Sep 03, 19
101 Commits / 54,007 ++ / 30,531 --

Kpax3 is a Julia package, written with the purpose of clustering (big) genetic datasets such as DNA/Protein Multiple Sequence Alignments (MSA). Kpax3 output consists of a classification of both the rows (statistical units) and columns (statistical variables) of the provided data matrix. It is an improved version of K-Pax2, based on a novel MCMC algorithm.

Kpax3 is a Julia package, written with the purpose of clustering (big) genetic datasets such as DNA/Protein Multiple Sequence Alignments (MSA). Kpax3 output consists of a classification of both the rows (statistical units) and columns (statistical variables) of the provided data matrix. It is an improved version of K-Pax2, based on a novel MCMC algorithm.

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Open source Jan 2013 → Current (7 years)
Last commit on Aug 30, 17
9 Commits / 6,864 ++ / 855 --

K-Pax2 is a R package, written with the purpose of clustering (big) datasets of categorical statistical variables. Main application of K-Pax2 is with genetic datasets, such as dna/protein multiple sequence alignments. Being a general method, it can be easily applied to any kind of categorical dataset. K-Pax2 output consists of a classification of both the rows (statistical units) and columns (statistical variables) of the provided data matrix.

K-Pax2 is a R package, written with the purpose of clustering (big) datasets of categorical statistical variables. Main application of K-Pax2 is with genetic datasets, such as dna/protein multiple sequence alignments. Being a general method, it can be easily applied to any kind of categorical dataset. K-Pax2 output consists of a classification of both the rows (statistical units) and columns (statistical variables) of the provided data matrix.

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Education Nov 2011 → Current
Ph.D. in Statistics, University of Helsinki

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Education Oct 2008 → Oct 2010
Master's degree in Statistics, Università degli Studi di Roma 'La Sapienza'

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Education Oct 2004 → Oct 2008
Bachelor's degree in Statistics, Università degli Studi di Roma 'La Sapienza'